AI RESEARCH
Beyond Single-Model Optimization: Preserving Plasticity in Continual Reinforcement Learning
arXiv CS.AI
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ArXi:2604.15414v1 Announce Type: cross Continual reinforcement learning must balance retention with adaptation, yet many methods still rely on \emph{single-model preservation}, committing to one evolving policy as the main reusable solution across tasks. Even when a previously successful policy is retained, it may no longer provide a reliable starting point for rapid adaptation after interference, reflecting a form of \emph{loss of plasticity} that single-policy preservation cannot address. Inspired by quality-diversity methods, we.